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      "metadata": {
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      "source": [
        "<a href=\"https://colab.research.google.com/github/mlabonne/llm-course/blob/main/Quantize_Llama_2_models_using_GGUF_and_llama_cpp.ipynb\" target=\"_parent\"><img src=\"https://colab.research.google.com/assets/colab-badge.svg\" alt=\"Open In Colab\"/></a>"
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      "cell_type": "markdown",
      "source": [
        "# Quantize Llama 2 models using GGUF and llama.cpp\n",
        "> 🗣️ [Large Language Model Course](https://github.com/mlabonne/llm-course)\n",
        "\n",
        "❤️ Created by [@maximelabonne](https://twitter.com/maximelabonne).\n",
        "\n",
        "## Usage\n",
        "\n",
        "* `MODEL_ID`: The ID of the model to quantize (e.g., `mlabonne/EvolCodeLlama-7b`).\n",
        "* `QUANTIZATION_METHOD`: The quantization method to use.\n",
        "\n",
        "## Quantization methods\n",
        "\n",
        "The names of the quantization methods follow the naming convention: \"q\" + the number of bits + the variant used (detailed below). Here is a list of all the possible quant methods and their corresponding use cases, based on model cards made by [TheBloke](https://huggingface.co/TheBloke/):\n",
        "\n",
        "* `q2_k`: Uses Q4_K for the attention.vw and feed_forward.w2 tensors, Q2_K for the other tensors.\n",
        "* `q3_k_l`: Uses Q5_K for the attention.wv, attention.wo, and feed_forward.w2 tensors, else Q3_K\n",
        "* `q3_k_m`: Uses Q4_K for the attention.wv, attention.wo, and feed_forward.w2 tensors, else Q3_K\n",
        "* `q3_k_s`: Uses Q3_K for all tensors\n",
        "* `q4_0`: Original quant method, 4-bit.\n",
        "* `q4_1`: Higher accuracy than q4_0 but not as high as q5_0. However has quicker inference than q5 models.\n",
        "* `q4_k_m`: Uses Q6_K for half of the attention.wv and feed_forward.w2 tensors, else Q4_K\n",
        "* `q4_k_s`: Uses Q4_K for all tensors\n",
        "* `q5_0`: Higher accuracy, higher resource usage and slower inference.\n",
        "* `q5_1`: Even higher accuracy, resource usage and slower inference.\n",
        "* `q5_k_m`: Uses Q6_K for half of the attention.wv and feed_forward.w2 tensors, else Q5_K\n",
        "* `q5_k_s`:  Uses Q5_K for all tensors\n",
        "* `q6_k`: Uses Q8_K for all tensors\n",
        "* `q8_0`: Almost indistinguishable from float16. High resource use and slow. Not recommended for most users.\n",
        "\n",
        "As a rule of thumb, **I recommend using Q5_K_M** as it preserves most of the model's performance. Alternatively, you can use Q4_K_M if you want to save some memory. In general, K_M versions are better than K_S versions. I cannot recommend Q2_K or Q3_* versions, as they drastically decrease model performance."
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      "source": [
        "# Variables\n",
        "MODEL_ID = \"mlabonne/EvolCodeLlama-7b\"\n",
        "QUANTIZATION_METHODS = [\"q4_k_m\", \"q5_k_m\"]\n",
        "\n",
        "# Constants\n",
        "MODEL_NAME = MODEL_ID.split('/')[-1]\n",
        "\n",
        "# Install llama.cpp\n",
        "!git clone https://github.com/ggerganov/llama.cpp\n",
        "!cd llama.cpp && git pull && make clean && LLAMA_CUBLAS=1 make\n",
        "!pip install -r llama.cpp/requirements.txt\n",
        "\n",
        "# Download model\n",
        "!git lfs install\n",
        "!git clone https://huggingface.co/{MODEL_ID}\n",
        "\n",
        "# Convert to fp16\n",
        "fp16 = f\"{MODEL_NAME}/{MODEL_NAME.lower()}.fp16.bin\"\n",
        "!python llama.cpp/convert.py {MODEL_NAME} --outtype f16 --outfile {fp16}\n",
        "\n",
        "# Quantize the model for each method in the QUANTIZATION_METHODS list\n",
        "for method in QUANTIZATION_METHODS:\n",
        "    qtype = f\"{MODEL_NAME}/{MODEL_NAME.lower()}.{method.upper()}.gguf\"\n",
        "    !./llama.cpp/quantize {fp16} {qtype} {method}"
      ],
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        },
        "id": "fD24jJxq7t3k",
        "outputId": "94954934-0829-44e9-a5e5-262c17e162d0"
      },
      "execution_count": null,
      "outputs": [
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            "ggml_init_cublas: found 1 CUDA devices:\n",
            "  Device 0: Tesla T4, compute capability 7.5\n",
            "main: build = 1100 (dd0dc36)\n",
            "main: quantizing 'EvolCodeLlama-7b/evolcodellama-7b.gguf.fp16.bin' to 'EvolCodeLlama-7b/evolcodellama-7b.gguf.q4_k_s.bin' as Q4_K_S\n",
            "llama_model_loader: loaded meta data with 16 key-value pairs and 291 tensors from EvolCodeLlama-7b/evolcodellama-7b.gguf.fp16.bin (version GGUF V1 (support until nov 2023))\n",
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            "llama_model_loader: - tensor   51:              blk.5.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   52:            blk.5.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   53:           blk.5.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   54:            blk.5.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   55:              blk.6.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   56:              blk.6.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   57:              blk.6.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   58:         blk.6.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   59:            blk.6.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   60:              blk.6.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   61:            blk.6.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   62:           blk.6.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   63:            blk.6.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   64:              blk.7.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   65:              blk.7.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   66:              blk.7.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   67:         blk.7.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   68:            blk.7.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   69:              blk.7.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   70:            blk.7.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   71:           blk.7.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   72:            blk.7.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   73:              blk.8.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   74:              blk.8.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   75:              blk.8.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   76:         blk.8.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   77:            blk.8.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   78:              blk.8.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   79:            blk.8.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   80:           blk.8.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   81:            blk.8.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   82:              blk.9.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   83:              blk.9.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   84:              blk.9.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   85:         blk.9.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   86:            blk.9.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   87:              blk.9.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   88:            blk.9.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   89:           blk.9.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   90:            blk.9.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   91:             blk.10.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   92:             blk.10.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   93:             blk.10.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   94:        blk.10.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   95:           blk.10.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   96:             blk.10.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   97:           blk.10.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   98:          blk.10.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   99:           blk.10.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  100:             blk.11.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  101:             blk.11.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  102:             blk.11.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  103:        blk.11.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  104:           blk.11.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  105:             blk.11.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  106:           blk.11.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  107:          blk.11.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  108:           blk.11.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  109:             blk.12.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  110:             blk.12.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  111:             blk.12.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  112:        blk.12.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  113:           blk.12.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  114:             blk.12.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  115:           blk.12.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  116:          blk.12.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  117:           blk.12.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  118:             blk.13.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  119:             blk.13.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  120:             blk.13.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  121:        blk.13.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  122:           blk.13.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  123:             blk.13.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  124:           blk.13.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  125:          blk.13.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  126:           blk.13.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  127:             blk.14.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  128:             blk.14.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  129:             blk.14.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  130:        blk.14.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  131:           blk.14.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  132:             blk.14.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  133:           blk.14.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  134:          blk.14.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  135:           blk.14.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  136:             blk.15.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  137:             blk.15.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  138:             blk.15.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  139:        blk.15.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  140:           blk.15.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  141:             blk.15.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  142:           blk.15.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  143:          blk.15.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  144:           blk.15.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  145:             blk.16.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  146:             blk.16.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  147:             blk.16.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  148:        blk.16.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  149:           blk.16.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  150:             blk.16.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  151:           blk.16.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  152:          blk.16.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  153:           blk.16.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  154:             blk.17.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  155:             blk.17.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  156:             blk.17.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  157:        blk.17.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  158:           blk.17.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  159:             blk.17.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  160:           blk.17.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  161:          blk.17.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  162:           blk.17.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  163:             blk.18.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  164:             blk.18.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  165:             blk.18.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  166:        blk.18.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  167:           blk.18.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  168:             blk.18.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  169:           blk.18.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  170:          blk.18.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  171:           blk.18.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  172:             blk.19.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  173:             blk.19.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  174:             blk.19.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  175:        blk.19.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  176:           blk.19.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  177:             blk.19.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  178:           blk.19.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  179:          blk.19.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  180:           blk.19.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  181:             blk.20.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  182:             blk.20.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  183:             blk.20.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  184:        blk.20.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  185:           blk.20.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  186:             blk.20.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  187:           blk.20.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  188:          blk.20.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  189:           blk.20.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  190:             blk.21.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  191:             blk.21.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  192:             blk.21.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  193:        blk.21.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  194:           blk.21.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  195:             blk.21.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  196:           blk.21.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  197:          blk.21.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  198:           blk.21.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  199:             blk.22.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  200:             blk.22.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  201:             blk.22.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  202:        blk.22.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  203:           blk.22.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  204:             blk.22.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  205:           blk.22.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  206:          blk.22.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  207:           blk.22.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  208:             blk.23.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  209:             blk.23.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  210:             blk.23.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  211:        blk.23.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  212:           blk.23.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  213:             blk.23.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  214:           blk.23.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  215:          blk.23.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  216:           blk.23.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  217:             blk.24.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  218:             blk.24.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  219:             blk.24.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  220:        blk.24.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  221:           blk.24.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  222:             blk.24.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  223:           blk.24.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  224:          blk.24.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  225:           blk.24.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  226:             blk.25.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  227:             blk.25.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  228:             blk.25.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  229:        blk.25.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  230:           blk.25.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  231:             blk.25.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  232:           blk.25.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  233:          blk.25.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  234:           blk.25.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  235:             blk.26.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  236:             blk.26.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  237:             blk.26.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  238:        blk.26.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  239:           blk.26.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  240:             blk.26.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  241:           blk.26.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  242:          blk.26.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  243:           blk.26.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  244:             blk.27.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  245:             blk.27.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  246:             blk.27.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  247:        blk.27.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  248:           blk.27.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  249:             blk.27.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  250:           blk.27.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  251:          blk.27.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  252:           blk.27.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  253:             blk.28.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  254:             blk.28.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  255:             blk.28.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  256:        blk.28.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  257:           blk.28.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  258:             blk.28.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  259:           blk.28.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  260:          blk.28.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  261:           blk.28.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  262:             blk.29.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  263:             blk.29.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  264:             blk.29.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  265:        blk.29.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  266:           blk.29.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  267:             blk.29.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  268:           blk.29.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  269:          blk.29.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  270:           blk.29.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  271:             blk.30.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  272:             blk.30.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  273:             blk.30.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  274:        blk.30.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  275:           blk.30.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  276:             blk.30.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  277:           blk.30.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  278:          blk.30.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  279:           blk.30.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  280:             blk.31.attn_q.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  281:             blk.31.attn_k.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  282:             blk.31.attn_v.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  283:        blk.31.attn_output.weight f16      [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  284:           blk.31.ffn_gate.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  285:             blk.31.ffn_up.weight f16      [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  286:           blk.31.ffn_down.weight f16      [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  287:          blk.31.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  288:           blk.31.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  289:               output_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  290:                    output.weight f16      [  4096, 32016,     1,     1 ]\n",
            "llama_model_loader: - kv   0:                       general.architecture str     \n",
            "llama_model_loader: - kv   1:                               general.name str     \n",
            "llama_model_loader: - kv   2:                       llama.context_length u32     \n",
            "llama_model_loader: - kv   3:                     llama.embedding_length u32     \n",
            "llama_model_loader: - kv   4:                          llama.block_count u32     \n",
            "llama_model_loader: - kv   5:                  llama.feed_forward_length u32     \n",
            "llama_model_loader: - kv   6:                 llama.rope.dimension_count u32     \n",
            "llama_model_loader: - kv   7:                 llama.attention.head_count u32     \n",
            "llama_model_loader: - kv   8:              llama.attention.head_count_kv u32     \n",
            "llama_model_loader: - kv   9:     llama.attention.layer_norm_rms_epsilon f32     \n",
            "llama_model_loader: - kv  10:                       llama.rope.freq_base f32     \n",
            "llama_model_loader: - kv  11:                          general.file_type u32     \n",
            "llama_model_loader: - kv  12:                       tokenizer.ggml.model str     \n",
            "llama_model_loader: - kv  13:                      tokenizer.ggml.tokens arr     \n",
            "llama_model_loader: - kv  14:                      tokenizer.ggml.scores arr     \n",
            "llama_model_loader: - kv  15:                  tokenizer.ggml.token_type arr     \n",
            "llama_model_loader: - type  f32:   65 tensors\n",
            "llama_model_loader: - type  f16:  226 tensors\n",
            "llama_model_quantize_internal: meta size = 741408 bytes\n",
            "[   1/ 291]                    token_embd.weight - [ 4096, 32016,     1,     1], type =    f16, quantizing to q4_K .. size =   250.12 MB ->    70.35 MB | hist: \n",
            "[   2/ 291]                  blk.0.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[   3/ 291]                  blk.0.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[   4/ 291]                  blk.0.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q5_K .. size =    32.00 MB ->    11.00 MB | hist: \n",
            "[   5/ 291]             blk.0.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[   6/ 291]                blk.0.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[   7/ 291]                  blk.0.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[   8/ 291]                blk.0.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q5_K .. size =    86.00 MB ->    29.56 MB | hist: \n",
            "[   9/ 291]               blk.0.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  10/ 291]                blk.0.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  11/ 291]                  blk.1.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  12/ 291]                  blk.1.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  13/ 291]                  blk.1.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q5_K .. size =    32.00 MB ->    11.00 MB | hist: \n",
            "[  14/ 291]             blk.1.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  15/ 291]                blk.1.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  16/ 291]                  blk.1.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  17/ 291]                blk.1.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q5_K .. size =    86.00 MB ->    29.56 MB | hist: \n",
            "[  18/ 291]               blk.1.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  19/ 291]                blk.1.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  20/ 291]                  blk.2.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  21/ 291]                  blk.2.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  22/ 291]                  blk.2.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q5_K .. size =    32.00 MB ->    11.00 MB | hist: \n",
            "[  23/ 291]             blk.2.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  24/ 291]                blk.2.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  25/ 291]                  blk.2.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  26/ 291]                blk.2.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q5_K .. size =    86.00 MB ->    29.56 MB | hist: \n",
            "[  27/ 291]               blk.2.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  28/ 291]                blk.2.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  29/ 291]                  blk.3.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  30/ 291]                  blk.3.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  31/ 291]                  blk.3.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q5_K .. size =    32.00 MB ->    11.00 MB | hist: \n",
            "[  32/ 291]             blk.3.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  33/ 291]                blk.3.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  34/ 291]                  blk.3.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  35/ 291]                blk.3.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q5_K .. size =    86.00 MB ->    29.56 MB | hist: \n",
            "[  36/ 291]               blk.3.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  37/ 291]                blk.3.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  38/ 291]                  blk.4.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  39/ 291]                  blk.4.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  40/ 291]                  blk.4.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  41/ 291]             blk.4.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  42/ 291]                blk.4.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  43/ 291]                  blk.4.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  44/ 291]                blk.4.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  45/ 291]               blk.4.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  46/ 291]                blk.4.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  47/ 291]                  blk.5.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  48/ 291]                  blk.5.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  49/ 291]                  blk.5.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  50/ 291]             blk.5.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  51/ 291]                blk.5.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  52/ 291]                  blk.5.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  53/ 291]                blk.5.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  54/ 291]               blk.5.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  55/ 291]                blk.5.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  56/ 291]                  blk.6.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  57/ 291]                  blk.6.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  58/ 291]                  blk.6.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  59/ 291]             blk.6.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  60/ 291]                blk.6.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  61/ 291]                  blk.6.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  62/ 291]                blk.6.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  63/ 291]               blk.6.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  64/ 291]                blk.6.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  65/ 291]                  blk.7.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  66/ 291]                  blk.7.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  67/ 291]                  blk.7.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  68/ 291]             blk.7.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  69/ 291]                blk.7.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  70/ 291]                  blk.7.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  71/ 291]                blk.7.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  72/ 291]               blk.7.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  73/ 291]                blk.7.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[  74/ 291]                  blk.8.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  75/ 291]                  blk.8.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  76/ 291]                  blk.8.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  77/ 291]             blk.8.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  78/ 291]                blk.8.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  79/ 291]                  blk.8.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  80/ 291]                blk.8.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  81/ 291]               blk.8.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[  83/ 291]                  blk.9.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  84/ 291]                  blk.9.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  85/ 291]                  blk.9.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  86/ 291]             blk.9.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  87/ 291]                blk.9.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  88/ 291]                  blk.9.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  89/ 291]                blk.9.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  90/ 291]               blk.9.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[  92/ 291]                 blk.10.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  93/ 291]                 blk.10.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  94/ 291]                 blk.10.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  95/ 291]            blk.10.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[  96/ 291]               blk.10.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  97/ 291]                 blk.10.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  98/ 291]               blk.10.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[  99/ 291]              blk.10.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 101/ 291]                 blk.11.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
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            "[ 106/ 291]                 blk.11.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 107/ 291]               blk.11.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 108/ 291]              blk.11.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 110/ 291]                 blk.12.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 111/ 291]                 blk.12.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 112/ 291]                 blk.12.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 113/ 291]            blk.12.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 114/ 291]               blk.12.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 115/ 291]                 blk.12.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 116/ 291]               blk.12.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 117/ 291]              blk.12.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 119/ 291]                 blk.13.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 120/ 291]                 blk.13.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
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            "[ 122/ 291]            blk.13.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 123/ 291]               blk.13.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 124/ 291]                 blk.13.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 125/ 291]               blk.13.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 126/ 291]              blk.13.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 127/ 291]               blk.13.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 128/ 291]                 blk.14.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 129/ 291]                 blk.14.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 130/ 291]                 blk.14.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 131/ 291]            blk.14.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 132/ 291]               blk.14.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 133/ 291]                 blk.14.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 134/ 291]               blk.14.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 135/ 291]              blk.14.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 137/ 291]                 blk.15.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 138/ 291]                 blk.15.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 139/ 291]                 blk.15.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 140/ 291]            blk.15.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 141/ 291]               blk.15.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 142/ 291]                 blk.15.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 143/ 291]               blk.15.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 144/ 291]              blk.15.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 145/ 291]               blk.15.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 146/ 291]                 blk.16.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 147/ 291]                 blk.16.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 148/ 291]                 blk.16.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 149/ 291]            blk.16.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 150/ 291]               blk.16.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 151/ 291]                 blk.16.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 152/ 291]               blk.16.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 153/ 291]              blk.16.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 155/ 291]                 blk.17.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 156/ 291]                 blk.17.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 157/ 291]                 blk.17.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 158/ 291]            blk.17.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 159/ 291]               blk.17.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 160/ 291]                 blk.17.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 161/ 291]               blk.17.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 162/ 291]              blk.17.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 163/ 291]               blk.17.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 164/ 291]                 blk.18.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 165/ 291]                 blk.18.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 166/ 291]                 blk.18.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 167/ 291]            blk.18.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 168/ 291]               blk.18.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 169/ 291]                 blk.18.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 170/ 291]               blk.18.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 171/ 291]              blk.18.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 172/ 291]               blk.18.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 173/ 291]                 blk.19.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 174/ 291]                 blk.19.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 175/ 291]                 blk.19.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 176/ 291]            blk.19.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 177/ 291]               blk.19.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 178/ 291]                 blk.19.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 179/ 291]               blk.19.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 180/ 291]              blk.19.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 182/ 291]                 blk.20.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 183/ 291]                 blk.20.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 184/ 291]                 blk.20.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 185/ 291]            blk.20.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 186/ 291]               blk.20.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 187/ 291]                 blk.20.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 188/ 291]               blk.20.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 189/ 291]              blk.20.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 191/ 291]                 blk.21.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
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            "[ 197/ 291]               blk.21.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 198/ 291]              blk.21.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 225/ 291]              blk.24.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 231/ 291]               blk.25.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 232/ 291]                 blk.25.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 233/ 291]               blk.25.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 234/ 291]              blk.25.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 235/ 291]               blk.25.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 236/ 291]                 blk.26.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
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            "[ 241/ 291]                 blk.26.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
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            "[ 243/ 291]              blk.26.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 245/ 291]                 blk.27.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 246/ 291]                 blk.27.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 247/ 291]                 blk.27.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 248/ 291]            blk.27.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 249/ 291]               blk.27.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 250/ 291]                 blk.27.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 251/ 291]               blk.27.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 252/ 291]              blk.27.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 253/ 291]               blk.27.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 257/ 291]            blk.28.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 258/ 291]               blk.28.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
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            "[ 261/ 291]              blk.28.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
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            "[ 263/ 291]                 blk.29.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 264/ 291]                 blk.29.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
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            "[ 267/ 291]               blk.29.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 268/ 291]                 blk.29.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 269/ 291]               blk.29.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 270/ 291]              blk.29.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 271/ 291]               blk.29.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 272/ 291]                 blk.30.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 273/ 291]                 blk.30.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 274/ 291]                 blk.30.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 275/ 291]            blk.30.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 276/ 291]               blk.30.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 277/ 291]                 blk.30.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 278/ 291]               blk.30.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 279/ 291]              blk.30.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 280/ 291]               blk.30.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 281/ 291]                 blk.31.attn_q.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 282/ 291]                 blk.31.attn_k.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 283/ 291]                 blk.31.attn_v.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 284/ 291]            blk.31.attn_output.weight - [ 4096,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    32.00 MB ->     9.00 MB | hist: \n",
            "[ 285/ 291]               blk.31.ffn_gate.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 286/ 291]                 blk.31.ffn_up.weight - [ 4096, 11008,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 287/ 291]               blk.31.ffn_down.weight - [11008,  4096,     1,     1], type =    f16, quantizing to q4_K .. size =    86.00 MB ->    24.19 MB | hist: \n",
            "[ 288/ 291]              blk.31.attn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 289/ 291]               blk.31.ffn_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 290/ 291]                   output_norm.weight - [ 4096,     1,     1,     1], type =    f32, size =    0.016 MB\n",
            "[ 291/ 291]                        output.weight - [ 4096, 32016,     1,     1], type =    f16, quantizing to q6_K .. size =   250.12 MB ->   102.59 MB | hist: \n",
            "llama_model_quantize_internal: model size  = 12853.27 MB\n",
            "llama_model_quantize_internal: quant size  =  3677.45 MB\n",
            "\n",
            "main: quantize time = 1089230.46 ms\n",
            "main:    total time = 1089230.46 ms\n"
          ]
        }
      ]
    },
    {
      "cell_type": "markdown",
      "source": [
        "## Run inference\n",
        "\n",
        "Here is a simple script to run your quantized models. I'm offloading every layer to the GPU (35 for a 7b parameter model) to speed up inference."
      ],
      "metadata": {
        "id": "WqI1CPiXI4dP"
      }
    },
    {
      "cell_type": "code",
      "source": [
        "import os\n",
        "\n",
        "model_list = [file for file in os.listdir(MODEL_NAME) if \"gguf\" in file]\n",
        "\n",
        "prompt = input(\"Enter your prompt: \")\n",
        "chosen_method = input(\"Name of the model (options: \" + \", \".join(model_list) + \"): \")\n",
        "\n",
        "# Verify the chosen method is in the list\n",
        "if chosen_method not in model_list:\n",
        "    print(\"Invalid name\")\n",
        "else:\n",
        "    qtype = f\"{MODEL_NAME}/{MODEL_NAME.lower()}.{method.upper()}.gguf\"\n",
        "    !./llama.cpp/main -m {qtype} -n 128 --color -ngl 35 -p \"{prompt}\""
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "vNPL9WYg78l-",
        "outputId": "3c3e7d2f-f0de-429d-fd97-dab480bc514a"
      },
      "execution_count": null,
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "Enter your prompt: prompt\n",
            "Please specify the quantization method to run the model (options: q4_k_s): q4_k_s\n",
            "main: build = 1100 (dd0dc36)\n",
            "main: seed  = 1693227123\n",
            "ggml_init_cublas: found 1 CUDA devices:\n",
            "  Device 0: Tesla T4, compute capability 7.5\n",
            "llama_model_loader: loaded meta data with 17 key-value pairs and 291 tensors from EvolCodeLlama-7b/evolcodellama-7b.gguf.q4_k_s.bin (version GGUF V2 (latest))\n",
            "llama_model_loader: - tensor    0:                token_embd.weight q4_K     [  4096, 32016,     1,     1 ]\n",
            "llama_model_loader: - tensor    1:              blk.0.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor    2:              blk.0.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor    3:              blk.0.attn_v.weight q5_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor    4:         blk.0.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor    5:            blk.0.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor    6:              blk.0.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor    7:            blk.0.ffn_down.weight q5_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor    8:           blk.0.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor    9:            blk.0.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   10:              blk.1.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   11:              blk.1.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   12:              blk.1.attn_v.weight q5_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   13:         blk.1.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   14:            blk.1.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   15:              blk.1.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   16:            blk.1.ffn_down.weight q5_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   17:           blk.1.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   18:            blk.1.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   19:              blk.2.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   20:              blk.2.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   21:              blk.2.attn_v.weight q5_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   22:         blk.2.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   23:            blk.2.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   24:              blk.2.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   25:            blk.2.ffn_down.weight q5_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   26:           blk.2.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   27:            blk.2.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   28:              blk.3.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   29:              blk.3.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   30:              blk.3.attn_v.weight q5_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   31:         blk.3.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   32:            blk.3.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   33:              blk.3.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   34:            blk.3.ffn_down.weight q5_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   35:           blk.3.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   36:            blk.3.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   37:              blk.4.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   38:              blk.4.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   39:              blk.4.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   40:         blk.4.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   41:            blk.4.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   42:              blk.4.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   43:            blk.4.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   44:           blk.4.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   45:            blk.4.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   46:              blk.5.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   47:              blk.5.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   48:              blk.5.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   49:         blk.5.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   50:            blk.5.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   51:              blk.5.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   52:            blk.5.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   53:           blk.5.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   54:            blk.5.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   55:              blk.6.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   56:              blk.6.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   57:              blk.6.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   58:         blk.6.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   59:            blk.6.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   60:              blk.6.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   61:            blk.6.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   62:           blk.6.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   63:            blk.6.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   64:              blk.7.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   65:              blk.7.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   66:              blk.7.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   67:         blk.7.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   68:            blk.7.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   69:              blk.7.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   70:            blk.7.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   71:           blk.7.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   72:            blk.7.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   73:              blk.8.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   74:              blk.8.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   75:              blk.8.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   76:         blk.8.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   77:            blk.8.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   78:              blk.8.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   79:            blk.8.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   80:           blk.8.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   81:            blk.8.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   82:              blk.9.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   83:              blk.9.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   84:              blk.9.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   85:         blk.9.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   86:            blk.9.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   87:              blk.9.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   88:            blk.9.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   89:           blk.9.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   90:            blk.9.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   91:             blk.10.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   92:             blk.10.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   93:             blk.10.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   94:        blk.10.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   95:           blk.10.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   96:             blk.10.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor   97:           blk.10.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor   98:          blk.10.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor   99:           blk.10.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  100:             blk.11.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  101:             blk.11.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  102:             blk.11.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  103:        blk.11.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  104:           blk.11.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  105:             blk.11.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  106:           blk.11.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  107:          blk.11.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  108:           blk.11.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  109:             blk.12.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  110:             blk.12.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  111:             blk.12.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  112:        blk.12.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  113:           blk.12.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  114:             blk.12.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  115:           blk.12.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  116:          blk.12.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  117:           blk.12.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  118:             blk.13.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  119:             blk.13.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  120:             blk.13.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  121:        blk.13.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  122:           blk.13.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  123:             blk.13.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  124:           blk.13.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  125:          blk.13.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  126:           blk.13.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  127:             blk.14.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  128:             blk.14.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  129:             blk.14.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  130:        blk.14.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  131:           blk.14.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  132:             blk.14.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  133:           blk.14.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  134:          blk.14.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  135:           blk.14.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  136:             blk.15.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  137:             blk.15.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  138:             blk.15.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  139:        blk.15.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  140:           blk.15.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  141:             blk.15.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  142:           blk.15.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  143:          blk.15.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  144:           blk.15.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  145:             blk.16.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  146:             blk.16.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  147:             blk.16.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  148:        blk.16.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  149:           blk.16.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  150:             blk.16.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  151:           blk.16.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  152:          blk.16.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  153:           blk.16.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  154:             blk.17.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  155:             blk.17.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  156:             blk.17.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  157:        blk.17.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  158:           blk.17.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  159:             blk.17.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  160:           blk.17.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  161:          blk.17.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  162:           blk.17.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  163:             blk.18.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  164:             blk.18.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  165:             blk.18.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  166:        blk.18.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  167:           blk.18.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  168:             blk.18.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  169:           blk.18.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  170:          blk.18.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  171:           blk.18.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  172:             blk.19.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  173:             blk.19.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  174:             blk.19.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  175:        blk.19.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  176:           blk.19.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  177:             blk.19.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  178:           blk.19.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  179:          blk.19.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  180:           blk.19.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  181:             blk.20.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  182:             blk.20.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  183:             blk.20.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  184:        blk.20.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  185:           blk.20.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  186:             blk.20.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  187:           blk.20.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  188:          blk.20.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  189:           blk.20.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  190:             blk.21.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  191:             blk.21.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  192:             blk.21.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  193:        blk.21.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  194:           blk.21.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  195:             blk.21.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  196:           blk.21.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  197:          blk.21.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  198:           blk.21.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  199:             blk.22.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  200:             blk.22.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  201:             blk.22.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  202:        blk.22.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  203:           blk.22.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  204:             blk.22.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  205:           blk.22.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  206:          blk.22.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  207:           blk.22.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  208:             blk.23.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  209:             blk.23.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  210:             blk.23.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  211:        blk.23.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  212:           blk.23.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  213:             blk.23.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  214:           blk.23.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  215:          blk.23.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  216:           blk.23.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  217:             blk.24.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  218:             blk.24.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  219:             blk.24.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  220:        blk.24.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  221:           blk.24.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  222:             blk.24.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  223:           blk.24.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  224:          blk.24.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  225:           blk.24.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  226:             blk.25.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  227:             blk.25.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  228:             blk.25.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  229:        blk.25.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  230:           blk.25.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  231:             blk.25.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  232:           blk.25.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  233:          blk.25.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  234:           blk.25.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  235:             blk.26.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  236:             blk.26.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  237:             blk.26.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  238:        blk.26.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  239:           blk.26.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  240:             blk.26.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  241:           blk.26.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  242:          blk.26.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  243:           blk.26.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  244:             blk.27.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  245:             blk.27.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  246:             blk.27.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  247:        blk.27.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  248:           blk.27.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  249:             blk.27.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  250:           blk.27.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  251:          blk.27.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  252:           blk.27.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  253:             blk.28.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  254:             blk.28.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  255:             blk.28.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  256:        blk.28.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  257:           blk.28.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  258:             blk.28.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  259:           blk.28.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  260:          blk.28.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  261:           blk.28.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  262:             blk.29.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  263:             blk.29.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  264:             blk.29.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  265:        blk.29.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  266:           blk.29.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  267:             blk.29.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  268:           blk.29.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  269:          blk.29.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  270:           blk.29.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  271:             blk.30.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  272:             blk.30.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  273:             blk.30.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  274:        blk.30.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  275:           blk.30.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  276:             blk.30.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  277:           blk.30.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  278:          blk.30.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  279:           blk.30.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  280:             blk.31.attn_q.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  281:             blk.31.attn_k.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  282:             blk.31.attn_v.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  283:        blk.31.attn_output.weight q4_K     [  4096,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  284:           blk.31.ffn_gate.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  285:             blk.31.ffn_up.weight q4_K     [  4096, 11008,     1,     1 ]\n",
            "llama_model_loader: - tensor  286:           blk.31.ffn_down.weight q4_K     [ 11008,  4096,     1,     1 ]\n",
            "llama_model_loader: - tensor  287:          blk.31.attn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  288:           blk.31.ffn_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  289:               output_norm.weight f32      [  4096,     1,     1,     1 ]\n",
            "llama_model_loader: - tensor  290:                    output.weight q6_K     [  4096, 32016,     1,     1 ]\n",
            "llama_model_loader: - kv   0:                       general.architecture str     \n",
            "llama_model_loader: - kv   1:                               general.name str     \n",
            "llama_model_loader: - kv   2:                       llama.context_length u32     \n",
            "llama_model_loader: - kv   3:                     llama.embedding_length u32     \n",
            "llama_model_loader: - kv   4:                          llama.block_count u32     \n",
            "llama_model_loader: - kv   5:                  llama.feed_forward_length u32     \n",
            "llama_model_loader: - kv   6:                 llama.rope.dimension_count u32     \n",
            "llama_model_loader: - kv   7:                 llama.attention.head_count u32     \n",
            "llama_model_loader: - kv   8:              llama.attention.head_count_kv u32     \n",
            "llama_model_loader: - kv   9:     llama.attention.layer_norm_rms_epsilon f32     \n",
            "llama_model_loader: - kv  10:                       llama.rope.freq_base f32     \n",
            "llama_model_loader: - kv  11:                          general.file_type u32     \n",
            "llama_model_loader: - kv  12:                       tokenizer.ggml.model str     \n",
            "llama_model_loader: - kv  13:                      tokenizer.ggml.tokens arr     \n",
            "llama_model_loader: - kv  14:                      tokenizer.ggml.scores arr     \n",
            "llama_model_loader: - kv  15:                  tokenizer.ggml.token_type arr     \n",
            "llama_model_loader: - kv  16:               general.quantization_version u32     \n",
            "llama_model_loader: - type  f32:   65 tensors\n",
            "llama_model_loader: - type q4_K:  217 tensors\n",
            "llama_model_loader: - type q5_K:    8 tensors\n",
            "llama_model_loader: - type q6_K:    1 tensors\n",
            "llm_load_print_meta: format         = GGUF V2 (latest)\n",
            "llm_load_print_meta: arch           = llama\n",
            "llm_load_print_meta: vocab type     = SPM\n",
            "llm_load_print_meta: n_vocab        = 32016\n",
            "llm_load_print_meta: n_merges       = 0\n",
            "llm_load_print_meta: n_ctx_train    = 16384\n",
            "llm_load_print_meta: n_ctx          = 512\n",
            "llm_load_print_meta: n_embd         = 4096\n",
            "llm_load_print_meta: n_head         = 32\n",
            "llm_load_print_meta: n_head_kv      = 32\n",
            "llm_load_print_meta: n_layer        = 32\n",
            "llm_load_print_meta: n_rot          = 128\n",
            "llm_load_print_meta: n_gqa          = 1\n",
            "llm_load_print_meta: f_norm_eps     = 1.0e-05\n",
            "llm_load_print_meta: f_norm_rms_eps = 1.0e-05\n",
            "llm_load_print_meta: n_ff           = 11008\n",
            "llm_load_print_meta: freq_base      = 1000000.0\n",
            "llm_load_print_meta: freq_scale     = 1\n",
            "llm_load_print_meta: model type     = 7B\n",
            "llm_load_print_meta: model ftype    = mostly Q4_K - Small\n",
            "llm_load_print_meta: model size     = 6.74 B\n",
            "llm_load_print_meta: general.name   = LLaMA\n",
            "llm_load_print_meta: BOS token = 1 '<s>'\n",
            "llm_load_print_meta: EOS token = 2 '</s>'\n",
            "llm_load_print_meta: UNK token = 0 '<unk>'\n",
            "llm_load_print_meta: LF token  = 13 '<0x0A>'\n",
            "llm_load_tensors: ggml ctx size =    0.09 MB\n",
            "llm_load_tensors: using CUDA for GPU acceleration\n",
            "llm_load_tensors: mem required  =   70.44 MB (+  256.00 MB per state)\n",
            "llm_load_tensors: offloading 32 repeating layers to GPU\n",
            "llm_load_tensors: offloading non-repeating layers to GPU\n",
            "llm_load_tensors: offloading v cache to GPU\n",
            "llm_load_tensors: offloading k cache to GPU\n",
            "llm_load_tensors: offloaded 35/35 layers to GPU\n",
            "llm_load_tensors: VRAM used: 3864 MB\n",
            "..................................................................................................\n",
            "llama_new_context_with_model: kv self size  =  256.00 MB\n",
            "llama_new_context_with_model: compute buffer total size =   71.94 MB\n",
            "llama_new_context_with_model: VRAM scratch buffer: 70.53 MB\n",
            "\n",
            "system_info: n_threads = 2 / 2 | AVX = 1 | AVX2 = 1 | AVX512 = 0 | AVX512_VBMI = 0 | AVX512_VNNI = 0 | FMA = 1 | NEON = 0 | ARM_FMA = 0 | F16C = 1 | FP16_VA = 0 | WASM_SIMD = 0 | BLAS = 1 | SSE3 = 1 | SSSE3 = 1 | VSX = 0 | \n",
            "sampling: repeat_last_n = 64, repeat_penalty = 1.100000, presence_penalty = 0.000000, frequency_penalty = 0.000000, top_k = 40, tfs_z = 1.000000, top_p = 0.950000, typical_p = 1.000000, temp = 0.800000, mirostat = 0, mirostat_lr = 0.100000, mirostat_ent = 5.000000\n",
            "generate: n_ctx = 512, n_batch = 512, n_predict = 128, n_keep = 0\n",
            "\n",
            "\n",
            "\u001b[33m prompt\u001b[0m.\t\t\t\t\n",
            "\t\t\t\t\tif( !this->m_pMiscSettings ) { return; }\t// If no misc settings, do nothing\n",
            "\t\t\t\t\t\n",
            "\t\t\t\t\t// Get the value of the checkbox for \"Always on top\"\n",
            "\t\t\t\t\tbool alwaysOnTop = this->m_pMiscSettings->GetBool(L\"AlwaysOnTop\", false);\n",
            "\t\t\t\t\tthis->SetWindowPos((alwaysOnTop ? HWND_TOPMOST : HWND_NOTOPMOST\n",
            "llama_print_timings:        load time =  1392.10 ms\n",
            "llama_print_timings:      sample time =   147.99 ms /   128 runs   (    1.16 ms per token,   864.92 tokens per second)\n",
            "llama_print_timings: prompt eval time =   261.80 ms /     2 tokens (  130.90 ms per token,     7.64 tokens per second)\n",
            "llama_print_timings:        eval time =  5923.18 ms /   127 runs   (   46.64 ms per token,    21.44 tokens per second)\n",
            "llama_print_timings:       total time =  6370.96 ms\n"
          ]
        }
      ]
    },
    {
      "cell_type": "markdown",
      "source": [
        "## Push to hub\n",
        "\n",
        "To push your model to the hub, you'll need to input your Hugging Face token (https://huggingface.co/settings/tokens) in Google Colab's \"Secrets\" tab. The following code creates a new repo with the \"-GGUF\" suffix. Don't forget to change the `username` variable."
      ],
      "metadata": {
        "id": "Ar8pO7bb80US"
      }
    },
    {
      "cell_type": "code",
      "source": [
        "!pip install -q huggingface_hub\n",
        "from huggingface_hub import create_repo, HfApi\n",
        "from google.colab import userdata\n",
        "\n",
        "# Defined in the secrets tab in Google Colab\n",
        "hf_token = userdata.get('huggingface')\n",
        "\n",
        "api = HfApi()\n",
        "username = \"mlabonne\"\n",
        "\n",
        "# Create empty repo\n",
        "create_repo(\n",
        "    repo_id = f\"{username}/{MODEL_NAME}-GGUF\",\n",
        "    repo_type=\"model\",\n",
        "    exist_ok=True,\n",
        "    token=hf_token\n",
        ")\n",
        "\n",
        "# Upload gguf files\n",
        "api.upload_folder(\n",
        "    folder_path=MODEL_NAME,\n",
        "    repo_id=f\"{username}/{MODEL_NAME}-GGUF\",\n",
        "    allow_patterns=f\"*.gguf\",\n",
        "    token=hf_token\n",
        ")"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 163,
          "referenced_widgets": [
            "c281b60e104f4c5da547bbdd7208d4bc",
            "74b084c97f6f46d293a197bf9804460c",
            "1409574c4f9742e7a711965dd2c8ad87",
            "704ecf9409244e0b93612d6a11476346",
            "b1a8d3a9a379415393d9e7d995a40788",
            "f928772f92724579b068e984d9eef387",
            "1c8a6b959f9c4443a92f58eff1b03077",
            "9fb5726f91734b1da149784680dc9624",
            "202a8eb11eda4e58942113fbeacfdc3d",
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            "7f8e268db8144adfb09d089784d8411a"
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        },
        "id": "UOyKfUD-8jmh",
        "outputId": "3c8df47b-f350-4251-a19f-4b9fb1116381"
      },
      "execution_count": null,
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "\u001b[?25l     \u001b[90m━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━\u001b[0m \u001b[32m0.0/268.8 kB\u001b[0m \u001b[31m?\u001b[0m eta \u001b[36m-:--:--\u001b[0m\r\u001b[2K     \u001b[91m━━━━━━━━━━\u001b[0m\u001b[91m╸\u001b[0m\u001b[90m━━━━━━━━━━━━━━━━━━━━━━━━━━━━━\u001b[0m \u001b[32m71.7/268.8 kB\u001b[0m \u001b[31m2.0 MB/s\u001b[0m eta \u001b[36m0:00:01\u001b[0m\r\u001b[2K     \u001b[90m━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━\u001b[0m \u001b[32m268.8/268.8 kB\u001b[0m \u001b[31m3.8 MB/s\u001b[0m eta \u001b[36m0:00:00\u001b[0m\n",
            "\u001b[?25h"
          ]
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "VBox(children=(HTML(value='<center> <img\\nsrc=https://huggingface.co/front/assets/huggingface_logo-noborder.sv…"
            ],
            "application/vnd.jupyter.widget-view+json": {
              "version_major": 2,
              "version_minor": 0,
              "model_id": "c281b60e104f4c5da547bbdd7208d4bc"
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}